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Data Analyst

InterQuest Group
City of London
4 days ago
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MI & Data Integration Analyst (Azure / Databricks)

📍 Hybrid – Central London | 💰 £43,000 pro rata | ⏳ 3-month FTC (potential to extend)


We’re looking for a technically strong and commercially aware MI & Data Integration Analyst to join a leading UK retail and technology business on an initial 3-month fixed-term contract.

This is a great opportunity for someone who enjoys combining hands-on data analysis, reporting, and Azure integration work — helping build robust data foundations and self-serve reporting capability for an evolving business area.


🔍 The Opportunity


You’ll be supporting a small, forward-thinking team to improve how they use data — helping them access accurate and timely MI, streamline processes, and migrate to a new Azure-based data environment.


You’ll take ownership of reporting improvements, work closely with third-party partners on offshoring data processes, and support the move of key datasets into the Unity Catalog environment.


đź’Ľ Key Responsibilities


  • Produce and enhance accurate, timely, and insightful MI reports to support business decision-making.
  • Develop and maintain data tables and integrations within Azure Databricks and the Unity Catalog to enable self-serve data access.
  • Define and deliver process maps for transferring data ingestion from internal teams to offshore partners.
  • Provide hands-on SQL expertise to design, optimise, and validate queries.
  • Support and guide third-party teams (Infosys) to ensure tasks meet agreed standards and timelines.
  • Document and communicate MI processes to support troubleshooting and continuous improvement.
  • Ensure all activity aligns with data governance and confidentiality standards.


đź§  Skills & Experience


  • Strong working knowledge of Azure and related integration tools.
  • SQL proficiency, ideally with experience in Databricks.
  • Proven experience in management information (MI) and reporting — ideally using Power BI and Excel.
  • Comfortable building, testing, and optimising data pipelines or integrations.
  • Excellent communication and stakeholder skills, able to explain data insight to non-technical users.
  • Analytical mindset — able to approach problems logically and holistically, considering downstream impact.
  • Experience with Python is desirable, but not essential.


🎯 What’s in it for you


  • The chance to shape data processes within a well-known UK brand.
  • Work with a modern Azure tech stack (Databricks, Power BI, Unity Catalog).
  • Collaborative and supportive hybrid team culture (2-3 days a week in London office).
  • 3-month FTC with a strong chance of extension, depending on project timelines and delivery


If you’re a data professional who enjoys improving data accessibility, building better reporting, and enabling teams to make smarter, data-driven decisions — we’d love to hear from you.

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